Active Ranking with Subset-wise Preferences
Aadirupa Saha, Aditya Gopalan

TL;DR
This paper develops efficient algorithms for PAC ranking of items using subset-wise preferences under the Plackett-Luce model, achieving optimal sample complexity bounds and introducing a novel pivot trick for score estimation.
Contribution
It introduces order-optimal algorithms for subset-wise preference elicitation in PAC ranking, with a new pivot trick reducing score estimation complexity.
Findings
Sample complexity matches lower bounds, showing optimality.
Top-m ranking feedback reduces sample complexity by a factor of m.
Numerical experiments validate theoretical results.
Abstract
We consider the problem of probably approximately correct (PAC) ranking items by adaptively eliciting subset-wise preference feedback. At each round, the learner chooses a subset of items and observes stochastic feedback indicating preference information of the winner (most preferred) item of the chosen subset drawn according to a Plackett-Luce (PL) subset choice model unknown a priori. The objective is to identify an -optimal ranking of the items with probability at least . When the feedback in each subset round is a single Plackett-Luce-sampled item, we show -PAC algorithms with a sample complexity of rounds, which we establish as being order-optimal by exhibiting a matching sample complexity lower bound of $\Omega\left(\frac{n}{\epsilon^2} \ln \frac{n}{\delta}…
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Taxonomy
TopicsAuction Theory and Applications · Game Theory and Voting Systems · Machine Learning and Algorithms
